Near Optimal Per-Clip Lagrangian Multiplier Prediction in HEVC
Daniel J Ringis,
François Pitié,
Anil Kokaram
Abstract:The majority of internet traffic is video content. This drives the demand for video compression to deliver high quality video at low target bitrates. Optimising the parameters of a video codec for a specific video clip (per-clip optimisation) has been shown to yield significant bitrate savings. In previous work we have shown that per-clip optimisation of the Lagrangian multiplier leads to up to 24% BD-Rate improvement. A key component of these algorithms is modeling the R-D characteristic across the appropriat… Show more
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